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Supervised Machine Learning for Population Genetics: A New Paradigm.

Schrider Daniel R, DR Kern, Andrew D AD

29331490 PubMed ID
3 Authors
2018-04-10 Published
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Chapter I

Publication Details

Comprehensive information about this research publication

Authors

SD
Schrider Daniel R
DK
DR Kern
AD
Andrew D AD
Chapter II

Abstract

Summary of the research findings

As population genomic datasets grow in size, researchers are faced with the daunting task of making sense of a flood of information. To keep pace with this explosion of data, computational methodologies for population genetic inference are rapidly being developed to best utilize genomic sequence data. In this review we discuss a new paradigm that has emerged in computational population genomics: that of supervised machine learning (ML). We review the fundamentals of ML, discuss recent applications of supervised ML to population genetics that outperform competing methods, and describe promising future directions in this area. Ultimately, we argue that supervised ML is an important and underutilized tool that has considerable potential for the world of evolutionary genomics.

Chapter III

Analysis

Comprehensive review of ancestry and genetic findings

Important Disclaimer: This review has been performed semi-automatically and is provided for informational purposes only. While we strive for accuracy, this analysis may contain errors, omissions, or misinterpretations of the original research. DNA Genics disclaims all liability for any inaccuracies, errors, or consequences arising from the use of this information. Users should independently verify all information and consult original research publications before making any decisions based on this content. This analysis is not intended as a substitute for professional scientific review or medical advice.

Summary

Key Findings

Ancestry Insights

Traits Analysis

Historical Context

Scientific Assessment